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arxiv: 1707.03010 · v1 · pith:5RENBE7Vnew · submitted 2017-07-10 · 📊 stat.ML

Sparse inference of the drift of a high-dimensional Ornstein-Uhlenbeck process

classification 📊 stat.ML
keywords processlassoornstein-uhlenbeckassumptionasymptoticdrifthigh-dimensionalinference
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Given the observation of a high-dimensional Ornstein-Uhlenbeck (OU) process in continuous time, we proceed to the inference of the drift parameter under a row-sparsity assumption. Towards that aim, we consider the negative log-likelihood of the process, penalized by an $\ell^1$-penalization (Lasso and Adaptive Lasso). We provide both non-asymptotic and asymptotic results for this procedure, by means of a sharp oracle inequality, and a limit theorem in the long-time asymptotics, including asymptotic consistency for variable selection. As a by-product, we point out the fact that for the Ornstein-Uhlenbeck process, one does not need an assumption of restricted eigenvalue type in order to derive fast rates for the Lasso, while it is well-known to be mandatory for linear regression for instance. Numerical results illustrate the benefits of this penalized procedure compared to standard maximum likelihood approaches both on simulations and real-world financial data.

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